Litcius/Paper detail

Nudging through Friction: An Approach for Calibrating Trust in Explainable AI

Mohammad Naiseh, Reem S. Al-Mansoori, Dena Al‐Thani, Nan Jiang, Raian Ali

202132 citationsDOI

Abstract

Explainability has become an essential requirement for safe and effective collaborative Human-AI environments., especially when generating recommendations through black-box modality. One goal of eXplainable AI (XAI) is to help humans calibrate their trust while working with intelligent systems., i.e., avoid situations where human decision-makers over-trust the AI when it is incorrect., or under-trust the AI when it is correct. XAI., in this context., aims to help humans understand AI reasoning and decide whether to follow or reject its recommendations. However., recent studies showed that users., on average., continue to overtrust (or under-trust) AI recommendations which is an indication of XAI's failure to support trust calibration. Such a failure to aid trust calibration was due to the assumption that XAI users would cognitively engage with explanations and interpret them without bias. In this work., we hypothesize that XAI interaction design can play a role in helping users' cognitive engagement with XAI and consequently enhance trust calibration. To this end., we propose friction as a Nudge-based approach to help XAI users to calibrate their trust in AI and present the results of a preliminary study of its potential in fulfilling that role.

Topics & Concepts

Computer scienceContext (archaeology)Modality (human–computer interaction)CalibrationCognitionArtificial intelligenceKnowledge managementPsychologyBiologyPaleontologyStatisticsNeuroscienceMathematicsExplainable Artificial Intelligence (XAI)Ethics and Social Impacts of AIDecision-Making and Behavioral Economics